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Investigation of Lung Cancer detection Using 3D Convolutional Deep Neural Network

机译:三维卷积深神经网络研究肺癌检测

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Lung cancer is one of the most prevalent cancer-related diseases with a high mortality rate, and this is largely due to the lateness in detecting the presence of malignancy. Again, the conventional methods used in the diagnosis of lung cancer have had their shortfalls. While the effectiveness of computerized tomography in detecting this malignancy, the large volumes of data that radiologists have to process not only present an arduous task but may also slow down the process of detecting lung cancer early enough for treatment to take its course. It is against this backdrop that computer-aided diagnostic (CAD) systems have been designed. One of such is the convolutional neural network, a method that best describes a group of deep learning models featuring filters that can be trained with local pooling operations being incorporated on input CT images in an alternating manner to create an array of hierarchical complex features. The need to have this type of data-driven technique is further informed by the attempt to ensure successful segmentation of lung nodules, a step that cannot be overruled when striving for a good model of detection or diagnosis. There are variations and models of the convolutional neural networks that have been effectively put to use in the lung nodule detection. The 2D CNN model has been utilized in the medical field for quite a while now, and as it has displayed its many strengths, so could the limitations not be hidden. It is in addressing these limitations and improving on the detection prowess of the convolutional neural network that the 3D model is now fast gaining traction. The 3D models have been reported to return pronounced sensitivity and specificity in detection of lung nodules, but the issues of time-consumption, training complexities and hardware memory usage could make it difficult to implement the 3D model in the medical field. In this paper, review the advances that have been made in the area of adopting 3D CNN model in the diagnosis of lung cancer.
机译:肺癌是最常见的癌症相关疾病具有高死亡率的一个,并且这主要是由于在检测恶性肿瘤的存在已晚。再次,在肺癌的诊断中使用的常规方法有其不足之处。虽然计算机断层扫描的检测这种恶性肿瘤的有效性,该大容量的数据的放射科医生必须过程不仅呈现一项艰巨的任务但也可减缓的检测肺癌足够早治疗顺其自然的过程。正是在这种背景下,计算机辅助诊断(CAD)系统已被设计。一种这样是卷积神经网络,最能描述一组深学习模型特征可以与本地池操作被输入的CT图像合并以交替的方式来创建的分级复杂特征的阵列被训练滤波器的方法。有这种类型的数据驱动的技术的需求通过试图确保肺结节的成功分割,追求检测或诊断的良好模型时不能被否决了一步通知。有迹象表明,已经有效地投入使用肺结节检测卷积神经网络的变化和模型。二维CNN模型已被用于医疗领域相当长一段时间,现在,它已经展示了其众多的优点,所以可以在限制无法隐藏。正是在解决这些限制,并提高对3D模型正在迅速获得牵引力卷积神经网络的检测实力。 3D模型已经被报道在检测肺结节的回报显着的敏感性和特异性,但时间消耗,训练的复杂性和硬件的内存使用情况的问题可能难以实现在医疗领域的3D模型。在本文中,查看已在采用3D模型CNN在肺癌的诊断领域所取得的进展。

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